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Pattern classification by assembling small neural networks

机译:通过组装小型神经网络进行模式分类

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In many pattern classification applications of artificial neural networks, the objects to be classified are represented by fixed sized 2-dimensional (or 1-dimensional) arrays of which the elements are the values of cells in a fixed sized 2-dimensional (or 1-dimensional) grid and the values of these elements are of the same type. For such problems, besides a general neural network structure, called an undistricted neural network, a districted neural network can be used to reduce the training complexity. A districted neural network consists of two levels of sub-neural networks, where each of the lower level sub-neural networks takes the elements in a region of the array as its inputs and outputs a temperate class label, while the higher level sub-neural network, uses the outputs of lower level sub-neural networks as inputs and derives the consensus label decision. We show, by using a simple model, that a districted neural network is more stable than an undistricted neural network. The conclusion is verified by experiments of using neural networks for face recognition.
机译:在人工神经网络的许多模式分类应用中,要分类的对象由固定大小的2维(或1维)数组表示,其元素是固定大小的2维(或1维)中的单元格值。维),并且这些元素的值属于同一类型。对于此类问题,除了称为无域神经网络的一般神经网络结构外,还可以使用分区神经网络来减少训练的复杂性。分区神经网络由两级亚神经网络组成,其中每个低级亚神经网络都将数组区域中的元素作为其输入并输出温带类别标签,而高级亚神经网络网络,将较低级别的次神经网络的输出用作输入,并得出共识标签决策。通过使用一个简单的模型,我们证明了分区神经网络比无分区神经网络更稳定。通过使用神经网络进行人脸识别的实验验证了这一结论。

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